Megaprojects are probabilistically dependent systems prone to progressive failures that are undertaken in significantly incentivized economic and political domains. Current processes in definition, estimation, and financing of these large projects often exclude relevant sources of socio-technical risks with overarching effects on the project. Applications of the artificial intelligence methods in forecasting project performance and outcomes considering socio-technical sources of risks have been mainly ad-hoc solutions catered to specific needs, project types, and data availability. This research proposes a high-level framework for dealing with socio-technical risks by utilizing available sources of data, expert knowledge, and the most appli...
The purpose of this dissertation is to analyze disaster risk components and how they impact intrasta...
Project risks encompass both internal and external factors that are interrelated, influencing others...
Conventionally, risk assessment methods suffer from ignoring the dynamic nature of risks. Therefore,...
Artificial Intelligence (AI) and data-driven decisions based on Machine Learning (ML) are making an ...
The management of economic risks is critical for the success of major infrastructure projects. As w...
Construction Projects are exposed to numerous risks due to their complex and uncertain nature, threa...
Risks and uncertainties are inevitable in construction projects and can drastically change the expec...
© 2021 Elsevier LtdRisk, complexity, and uncertainty are inherent components of megaprojects due to ...
For several years machine learning methods have been proposed for risk classification. Whilst machin...
Effective risk assessment and management is critical for success in international construction proje...
Abstract. Economic growth and development is the most important factor in the development of a count...
Environmental impact assessment (EIA) is used globally to manage the impacts of development projects...
Project implementation is often carried out under the influence of negative changes in the environme...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
The technology of artificial intelligence is actively being mastered in the world but there is not m...
The purpose of this dissertation is to analyze disaster risk components and how they impact intrasta...
Project risks encompass both internal and external factors that are interrelated, influencing others...
Conventionally, risk assessment methods suffer from ignoring the dynamic nature of risks. Therefore,...
Artificial Intelligence (AI) and data-driven decisions based on Machine Learning (ML) are making an ...
The management of economic risks is critical for the success of major infrastructure projects. As w...
Construction Projects are exposed to numerous risks due to their complex and uncertain nature, threa...
Risks and uncertainties are inevitable in construction projects and can drastically change the expec...
© 2021 Elsevier LtdRisk, complexity, and uncertainty are inherent components of megaprojects due to ...
For several years machine learning methods have been proposed for risk classification. Whilst machin...
Effective risk assessment and management is critical for success in international construction proje...
Abstract. Economic growth and development is the most important factor in the development of a count...
Environmental impact assessment (EIA) is used globally to manage the impacts of development projects...
Project implementation is often carried out under the influence of negative changes in the environme...
This article reports on an ongoing research project, which is aimed at implementing advanced probabi...
The technology of artificial intelligence is actively being mastered in the world but there is not m...
The purpose of this dissertation is to analyze disaster risk components and how they impact intrasta...
Project risks encompass both internal and external factors that are interrelated, influencing others...
Conventionally, risk assessment methods suffer from ignoring the dynamic nature of risks. Therefore,...